PSO-BP Neural Network-Based Strain Prediction of Wind Turbine Blades
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Zheng Liu | Shun-Peng Zhu | Zhongwei Liang | Xin Liu | José A F O Correia | Abílio M P De Jesus | J. Correia | A. D. de Jesus | Zheng Liu | Xin Liu | Z. Liang | Shun‐Peng Zhu | A. D. de Jesus
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